RGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path Planning

Abstract Evolutionary algorithms, such as particle swarm optimization (PSO), are widely applied to UAV path planning problems. However, the fixed particle length of PSO, which may not be suitable for the scenario, will compromise the search efficiency. This paper proposes the RGG-PSO+ method, which...

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Published in:International Journal of Computational Intelligence Systems
Main Authors: Yang Liu, Xiaomin Zhu, Xiao-Yi Zhang, Jiannan Xiao, Xiaohan Yu
Format: Article
Language:English
Published: Springer 2024-05-01
Subjects:
Online Access:https://doi.org/10.1007/s44196-024-00511-x
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author Yang Liu
Xiaomin Zhu
Xiao-Yi Zhang
Jiannan Xiao
Xiaohan Yu
author_facet Yang Liu
Xiaomin Zhu
Xiao-Yi Zhang
Jiannan Xiao
Xiaohan Yu
author_sort Yang Liu
collection DOAJ
container_title International Journal of Computational Intelligence Systems
description Abstract Evolutionary algorithms, such as particle swarm optimization (PSO), are widely applied to UAV path planning problems. However, the fixed particle length of PSO, which may not be suitable for the scenario, will compromise the search efficiency. This paper proposes the RGG-PSO+ method, which adapts to scenarios by dynamically adjusting the number of waypoints. Random geometric graphs (RGG) and the divide-and-conquer paradigm are involved in improving the proposed method. Comparative analyses with established heuristic methods demonstrate RGG-PSO+’s superior performance in complex environments, particularly in terms of convergence speed and path length. The implementation of RGG significantly improves the F-Measure, indicating a shift from exploration to exploitation of PSO’s iterations, and the implementation of the divide-and-conquer paradigm is evident in the improved mean and variance of normalized path lengths.
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spelling doaj-art-df3532c4a9354cfc98e7fa32ec79f3fb2025-08-19T22:34:34ZengSpringerInternational Journal of Computational Intelligence Systems1875-68832024-05-0117111310.1007/s44196-024-00511-xRGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path PlanningYang Liu0Xiaomin Zhu1Xiao-Yi Zhang2Jiannan Xiao3Xiaohan Yu4Beijing Jiaotong UniversityBeijing Jiaotong UniversityUniversity of Science and Technology BeijingUniversity of Science and Technology of ChinaBeijing Jiaotong UniversityAbstract Evolutionary algorithms, such as particle swarm optimization (PSO), are widely applied to UAV path planning problems. However, the fixed particle length of PSO, which may not be suitable for the scenario, will compromise the search efficiency. This paper proposes the RGG-PSO+ method, which adapts to scenarios by dynamically adjusting the number of waypoints. Random geometric graphs (RGG) and the divide-and-conquer paradigm are involved in improving the proposed method. Comparative analyses with established heuristic methods demonstrate RGG-PSO+’s superior performance in complex environments, particularly in terms of convergence speed and path length. The implementation of RGG significantly improves the F-Measure, indicating a shift from exploration to exploitation of PSO’s iterations, and the implementation of the divide-and-conquer paradigm is evident in the improved mean and variance of normalized path lengths.https://doi.org/10.1007/s44196-024-00511-xParticle swarm optimization(PSO)Random geometric graphs(RGG)UAVPath planning
spellingShingle Yang Liu
Xiaomin Zhu
Xiao-Yi Zhang
Jiannan Xiao
Xiaohan Yu
RGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path Planning
Particle swarm optimization(PSO)
Random geometric graphs(RGG)
UAV
Path planning
title RGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path Planning
title_full RGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path Planning
title_fullStr RGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path Planning
title_full_unstemmed RGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path Planning
title_short RGG-PSO+: Random Geometric Graphs Based Particle Swarm Optimization Method for UAV Path Planning
title_sort rgg pso random geometric graphs based particle swarm optimization method for uav path planning
topic Particle swarm optimization(PSO)
Random geometric graphs(RGG)
UAV
Path planning
url https://doi.org/10.1007/s44196-024-00511-x
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